Recently, there has been an increased interest in the application of machine learning (ML) techniques to a variety of problems in condensed matter physics. In this regard, of particular significance is the characterization of simple and complex phases of matter. Here, we use a ML approach to construct the full phase diagram of a well known spin model combining ferromagnetic exchange and Dzyaloshinskii-Moriya (DM) interactions where topological phases emerge. At low temperatures, the system is tuned from a spiral phase to a skyrmion crystal by a magnetic field. However, thermal fluctuations induce two types of intermediate phases, bimerons and skyrmion gas, which are not as easily determined as spirals or skyrmion crystals. We resort to larg...
We reinvestigate the phase transitions of the Ising model on the Kagome lattice with antiferromagnet...
We describe a procedure for alleviating the fermion sign problem in which phase fluctuations are exp...
We employ several unsupervised machine learning techniques, including autoencoders, random trees emb...
Recently, there has been an increased interest in the application of machine learning (ML) technique...
Title: Analysis of magnetic skyrmions using machine learning methods Author: Ondřej Dušek Department...
We propose and apply simple machine learning approaches for recognition and classification of comple...
Machine learning offers an unprecedented perspective for the problem of classifying phases in conden...
We propose a transparent and universal machine method for defining phase transitions in magnetic mat...
Magnetic skyrmions are vortex-like spin structures that appear in magnetic materials with Dzyaloshin...
Recently proposed spintronic devices use magnetic skyrmions as bits of information. The reliable det...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
We present an in-depth study of the competition between skyrmions and a chiral spin liquid in a mode...
We develop deep autoregressive networks with multi channels to compute many-body systems with \emph{...
Employing supervised machine learning techniques, we investigate the deconfinement phase transition ...
Identifying phase transitions and classifying phases of matter is central to understanding the prope...
We reinvestigate the phase transitions of the Ising model on the Kagome lattice with antiferromagnet...
We describe a procedure for alleviating the fermion sign problem in which phase fluctuations are exp...
We employ several unsupervised machine learning techniques, including autoencoders, random trees emb...
Recently, there has been an increased interest in the application of machine learning (ML) technique...
Title: Analysis of magnetic skyrmions using machine learning methods Author: Ondřej Dušek Department...
We propose and apply simple machine learning approaches for recognition and classification of comple...
Machine learning offers an unprecedented perspective for the problem of classifying phases in conden...
We propose a transparent and universal machine method for defining phase transitions in magnetic mat...
Magnetic skyrmions are vortex-like spin structures that appear in magnetic materials with Dzyaloshin...
Recently proposed spintronic devices use magnetic skyrmions as bits of information. The reliable det...
The transfer learning of a neural network is one of its most outstanding aspects and has given super...
We present an in-depth study of the competition between skyrmions and a chiral spin liquid in a mode...
We develop deep autoregressive networks with multi channels to compute many-body systems with \emph{...
Employing supervised machine learning techniques, we investigate the deconfinement phase transition ...
Identifying phase transitions and classifying phases of matter is central to understanding the prope...
We reinvestigate the phase transitions of the Ising model on the Kagome lattice with antiferromagnet...
We describe a procedure for alleviating the fermion sign problem in which phase fluctuations are exp...
We employ several unsupervised machine learning techniques, including autoencoders, random trees emb...